Performance Enhanced Hybrid Memetic Framework for Effective Coverage Based Test Case Optimization.- An Optimization Procedure for Quadratic Fractional Transportation Problem.- A Nature Inspired PID like Fuzzy Knowledge Based Fractional Order Controller for Optimization.- Neuro-Fuzzy-Rough Classification for Increasing Efficiency and Performance in Case-Based Reasoning Retrieval.- Better Performance of Human Action Recognition from Spatiotemporal Depth Information Features Classification.- Selecting Appropriate Multipath Routing In Wireless Sensor Networks for Improvisation of System’s Efficiency and Performance.- A Classification of ECG Arrhythmic Analysis Based on Performance Factors using Machine Learning Approach.- A Time Efficient Semi Automatic Active Contour Model of Liver Tumor Segmentation from CT Images.- Denoising 1d Signal Using Wavelets for Signal Quality Enhancement.
Dr. Millie Pant is Associate Professor at the Department of Applied Science & Engineering., IIT Roorkee, India. She has published over 180 research papers and has edited a number of Springer Conference Proceedings volumes. She is Associate Editor, Guest Editor and Reviewer for various Springer and Inderscience journals and IEEE Transactions. She has served as General Chair, Program Chair, Session and Track Chair at numerous national & international conferences, and has delivered guest lectures at various leading national and international institutions. She has been involved in international collaboration with MIRS Lab, USA; Liverpool Hope University, UK; and Université Paris-EstCréteil Val-de-Marne, Paris, France.
Dr. Tarun Kumar Sharma is an Associate Professor at Amity University Rajasthan, India. He holds a Ph.D. in Soft Computing from IIT, Roorkee, and has published over 90 research papers. He has served as General Chair, Program Chair, Track Chair in the SoCTA, SoCPros Conference Series. He has edited a number of Springer Conference Proceedings volumes. He is Associate Editor, Guest Editor and Reviewer for various Springer and Inderscience journals and IEEE Transactions. He has delivered guest lectures at various leading national and international institutions. He is member of IET, IANEG, CSTA, and MIRS Lab.
Dr. Sebastian Basterrech is an Associate Professor at the Department of CS, Faculty of Electrical Engineering, Czech Technical University, Prague, He has 70+ research publications to his credit. He is Associate Editor, Guest Editor and Reviewer Springer and Inderscience journals and IEEE Transactions. He has acted as Program Chair and Technical Chair at numerous national & international conferences, and has made valuable contributions in areas related to quasi-Newton optimization, random neural networks, reservoir computing, neural computation & soft-computing techniques.
Dr. Chitresh Banerjee is an Assistant Professor at Amity University, Rajasthan, India. He has published over 60 research papers and has also worked as Executive Officer on the Board of Studies at The Institute of Chartered Accountants of India (Set up by an Act of Parliament), New Delhi. He is member of 15 international societies and associations. Under the Institute-Industry linkage program, he delivers expert lectures on various themes related to IT. He has authored several books, and has acted as Editor, Associate Editor, Guest Editor and Reviewer for numerous national and international journals and conference proceedings.
This book explores a range of important theoretical and practical issues in the field of computational network application tools, while also presenting the latest advances and innovations using intelligent technology approaches. The main focus is on detecting and diagnosing complex application performance problems so that an optimal and expected level of system service can be attained and maintained. The book discusses challenging issues like enhancing system efficiency, performance, and assurance management, and blends the concept of system modeling and optimization techniques with soft computing, neural network, and sensor network approaches. In addition, it presents certain metrics and measurements that can be translated into business value. These metrics and measurements can also help to establish an empirical performance baseline for various applications, which can be used to identify changes in system performance. By presenting various intelligent technologies, the book provides readers with compact but insightful information on several broad and rapidly growing areas in the computation network application domain.
The book’s twenty-two chapters examine and address current and future research topics in areas like neural networks, soft computing, nature-inspired computing, fuzzy logic and evolutionary computation, machine learning, smart security, and wireless networking, and cover a wide range of applications from pattern recognition and system modeling, to intelligent control problems and biomedical applications.
The book was written to serve a broad readership, including engineers, computer scientists, management professionals, and mathematicians interested in studying tools and techniques for computational intelligence and applications for performance analysis. Featuring theoretical concepts and best practices in computational network applications, it will also be helpful for researchers, graduate and undergraduate students with an interest in the fields of soft computing, neural networks, machine learning, sensor networks, smart security, etc.